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D-S Evidence Theory and Its Data Fusion Application in Intrusion Detection

机译:D-S证据理论及其在入侵检测中的数据融合应用

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摘要

Traditional Intrusion Detection System (IDS) focus on low-level attacks or anomalies, and too many alerts are produced in practical application. Based on the D-S Evidence Theory and its data fusion technology, a novel detection data fusion model-IDSDFM is presented. By correlating and merging alerts of different types of IDSs, a set of alerts can be partitioned into different alert tracks such that the alerts in the same alert track may correspond to the same attack. On the base of it, the current security situation of network is estimated by applying the D-S Evidence Theory, and some IDSs in the network are dynamically adjusted to strengthen the detection of the data which relate to the attack attempts. Consequently, the false positive rate and the false negative rate are effectively reduced, and the detection efficiency of IDS is improved.
机译:传统的入侵检测系统(IDS)专注于低级攻击或异常,并且在实际应用中产生太多警报。基于D-S证据理论及其数据融合技术,提出了一种新型检测数据融合模型-IDSDFM。通过关联和合并不同类型IDS的警报,可以将一组警报分成不同的警报轨道,使得同一警报轨道中的警报可以对应于相同的攻击。在它的基础上,通过应用D-S证据理论估计网络的当前安全状况,并且网络中的一些IDS被动态调整,以增强与攻击尝试相关的数据的检测。因此,有效地降低了假阳性率和假负速率,并且改善了ID的检测效率。

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